JuanMontesinos commited on
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5849b5e
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  1. Dockerfile +15 -0
  2. app.py +53 -0
  3. model.h5 +3 -0
  4. model.json +1 -0
  5. requirements.txt +5 -0
Dockerfile ADDED
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+ # Usa una imagen base de Python
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+ FROM python:3.9
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+ # Establece el directorio de trabajo
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+ WORKDIR /code
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+
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+ # Copia los archivos necesarios al contenedor
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+ COPY ./requirements.txt /code/requirements.txt
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+ RUN pip install --no-cache-dir -r /code/requirements.txt
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+
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+ COPY . .
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+
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+ RUN chmod -R 777 /code
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+
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+ # Comando para ejecutar la aplicación
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+ CMD ["uvicorn", "app:app", "--host", "0.0.0.0", "--port", "7860"]
app.py ADDED
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+ from keras.api.models import Sequential
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+ from keras.api.layers import InputLayer, Dense
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+ from fastapi import FastAPI, HTTPException
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+ from pydantic import BaseModel
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+ import numpy as np
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+ from typing import List
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+
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+
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+ class InputData(BaseModel):
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+ data: List[float] # Lista de características numéricas (flotantes)
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+
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+
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+ app = FastAPI()
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+
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+
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+ # Función para construir el modelo manualmente
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+ def build_model():
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+ model = Sequential(
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+ [
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+ InputLayer(
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+ input_shape=(5,), name="dense_2_input"
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+ ), # Ajusta el tamaño de entrada según tu modelo
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+ Dense(16, activation="relu", name="dense_2"),
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+ Dense(16, activation="relu", name="dense_3"),
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+ Dense(1, activation="sigmoid", name="dense_4"),
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+ ]
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+ )
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+ model.load_weights(
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+ "model.h5"
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+ ) # Asegúrate de que los nombres de las capas coincidan para que los pesos se carguen correctamente
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+ model.compile(
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+ loss='binary_crossentropy',optimizer='adam',metrics=["binary_accuracy"]
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+ )
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+ return model
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+
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+
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+ model = build_model() # Construir el modelo al iniciar la aplicación
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+
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+
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+ # Ruta de predicción
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+ @app.post("/predict/")
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+ async def predict(data: InputData):
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+ print(f"Data: {data}")
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+ global model
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+ try:
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+ # Convertir la lista de entrada a un array de NumPy para la predicción
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+ input_data = np.array(data.data).reshape(
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+ 1, -1
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+ ) # Asumiendo que la entrada debe ser de forma (1, num_features)
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+ prediction = model.predict(input_data).round()
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+ return {"prediction": prediction.tolist()}
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+ except Exception as e:
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+ raise HTTPException(status_code=500, detail=str(e))
model.h5 ADDED
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+ version https://git-lfs.github.com/spec/v1
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+ oid sha256:d9c49f1f2bc4b3a9d5c843fa022bcdbf1bbf993983ce1e0d5a774f942ab929e9
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+ size 16648
model.json ADDED
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+ {"class_name": "Sequential", "config": {"name": "sequential", "layers": [{"module": "keras.layers", "class_name": "InputLayer", "config": {"batch_input_shape": [null, 5], "dtype": "float32", "sparse": false, "ragged": false, "name": "dense_input"}, "registered_name": null}, {"module": "keras.layers", "class_name": "Dense", "config": {"name": "dense", "trainable": true, "dtype": "float32", "batch_input_shape": [null, 5], "units": 16, "activation": "relu", "use_bias": true, "kernel_initializer": {"module": "keras.initializers", "class_name": "GlorotUniform", "config": {"seed": null}, "registered_name": null}, "bias_initializer": {"module": "keras.initializers", "class_name": "Zeros", "config": {}, "registered_name": null}, "kernel_regularizer": null, "bias_regularizer": null, "activity_regularizer": null, "kernel_constraint": null, "bias_constraint": null}, "registered_name": null, "build_config": {"input_shape": [null, 5]}}, {"module": "keras.layers", "class_name": "Dense", "config": {"name": "dense_1", "trainable": true, "dtype": "float32", "units": 16, "activation": "relu", "use_bias": true, "kernel_initializer": {"module": "keras.initializers", "class_name": "GlorotUniform", "config": {"seed": null}, "registered_name": null}, "bias_initializer": {"module": "keras.initializers", "class_name": "Zeros", "config": {}, "registered_name": null}, "kernel_regularizer": null, "bias_regularizer": null, "activity_regularizer": null, "kernel_constraint": null, "bias_constraint": null}, "registered_name": null, "build_config": {"input_shape": [null, 16]}}, {"module": "keras.layers", "class_name": "Dense", "config": {"name": "dense_2", "trainable": true, "dtype": "float32", "units": 1, "activation": "sigmoid", "use_bias": true, "kernel_initializer": {"module": "keras.initializers", "class_name": "GlorotUniform", "config": {"seed": null}, "registered_name": null}, "bias_initializer": {"module": "keras.initializers", "class_name": "Zeros", "config": {}, "registered_name": null}, "kernel_regularizer": null, "bias_regularizer": null, "activity_regularizer": null, "kernel_constraint": null, "bias_constraint": null}, "registered_name": null, "build_config": {"input_shape": [null, 16]}}]}, "keras_version": "2.15.0", "backend": "tensorflow"}
requirements.txt ADDED
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+ tensorflow
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+ keras
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+ fastapi
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+ numpy
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+ pydantic